Department of Economics, University of California, San Diego, La Jolla, CA, United States.
Department of Biomedical Informatics, University of California, San Diego, La Jolla, CA, United States.
J Med Internet Res. 2023 Feb 13;25:e43486. doi: 10.2196/43486.
Sepsis costs and incidence vary dramatically across diagnostic categories, warranting a customized approach for implementing predictive models.
The aim of this study was to optimize the parameters of a sepsis prediction model within distinct patient groups to minimize the excess cost of sepsis care and analyze the potential effect of factors contributing to end-user response to sepsis alerts on overall model utility.
We calculated the excess costs of sepsis to the Centers for Medicare and Medicaid Services (CMS) by comparing patients with and without a secondary sepsis diagnosis but with the same primary diagnosis and baseline comorbidities. We optimized the parameters of a sepsis prediction algorithm across different diagnostic categories to minimize these excess costs. At the optima, we evaluated diagnostic odds ratios and analyzed the impact of compliance factors such as noncompliance, treatment efficacy, and tolerance for false alarms on the net benefit of triggering sepsis alerts.
Compliance factors significantly contributed to the net benefit of triggering a sepsis alert. However, a customized deployment policy can achieve a significantly higher diagnostic odds ratio and reduced costs of sepsis care. Implementing our optimization routine with powerful predictive models could result in US $4.6 billion in excess cost savings for CMS.
We designed a framework for customizing sepsis alert protocols within different diagnostic categories to minimize excess costs and analyzed model performance as a function of false alarm tolerance and compliance with model recommendations. We provide a framework that CMS policymakers could use to recommend minimum adherence rates to the early recognition and appropriate care of sepsis that is sensitive to hospital department-level incidence rates and national excess costs. Customizing the implementation of clinical predictive models by accounting for various behavioral and economic factors may improve the practical benefit of predictive models.
脓毒症的成本和发病率在不同诊断类别中差异巨大,因此需要针对实施预测模型采取定制方法。
本研究旨在针对不同患者群体优化脓毒症预测模型的参数,以最小化脓毒症治疗的超额成本,并分析导致脓毒症警报对最终用户反应的因素对整体模型效用的潜在影响。
我们通过比较具有相同主要诊断和基线合并症但具有次要脓毒症诊断和无次要脓毒症诊断的患者,计算了医疗保险和医疗补助服务中心(CMS)的脓毒症超额成本。我们针对不同诊断类别优化了脓毒症预测算法的参数,以最小化这些超额成本。在最优情况下,我们评估了诊断优势比,并分析了不遵守、治疗效果和对误报容忍度等合规因素对触发脓毒症警报的净收益的影响。
合规因素对触发脓毒症警报的净收益有显著贡献。然而,定制部署策略可以实现更高的诊断优势比和降低脓毒症治疗成本。实施我们的优化程序和强大的预测模型可以为 CMS 节省 46 亿美元的超额成本。
我们设计了一个在不同诊断类别中定制脓毒症警报协议的框架,以最小化超额成本,并分析了模型性能作为误报容忍度和对模型建议的遵守程度的函数。我们提供了一个 CMS 政策制定者可以用来建议最小化早期识别和适当治疗脓毒症的最低依从率的框架,该框架对医院科室级发病率和国家超额成本敏感。通过考虑各种行为和经济因素来定制临床预测模型的实施,可以提高预测模型的实际效益。